Targeted Display Advertising using Machine Learning

Chaitali Khachane
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Abstract

This paper delves into the intricate challenges of problem formulation and data representation in the context of a large-scale machine learning system for targeted display advertising. Unlike traditional models, this system is not just conceptual but has been operational for years across thousands of advertising campaigns. Since obtaining ideal training data is cost-prohibitive, data is sourced from related domains and tasks and then adapted for the target task. The paper outlines the architecture of this multi-stage transfer learning system, emphasizing the problem formulation aspects. Extensive experiments demonstrate the value of each transfer stage. Real-world results with diverse advertising clients from various industries showcase the system's performance. The paper concludes with valuable insights gained from over half a decade of work on this complex, widely deployed machine learning system.
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利用机器学习进行有针对性的展示广告
本文深入探讨了针对定向显示广告的大规模机器学习系统在问题制定和数据表示方面所面临的复杂挑战。与传统模型不同,该系统不仅是概念性的,而且已在数千个广告活动中运行多年。由于获得理想的训练数据成本高昂,因此需要从相关领域和任务中获取数据,然后根据目标任务进行调整。本文概述了这种多阶段迁移学习系统的架构,强调了问题制定方面。大量实验证明了每个迁移阶段的价值。来自各行各业的不同广告客户的实际结果展示了该系统的性能。最后,本文总结了在这一复杂、广泛部署的机器学习系统方面长达 50 多年的工作所获得的宝贵见解。
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